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Storage of Phase-Coded Patterns via STDP in Fully-Connected and Sparse Network: A Study of the Network Capacity

机译:在全连接和稀疏网络中通过STDP存储相位编码模式:网络容量的研究

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摘要

We study the storage and retrieval of phase-coded patterns as stable dynamical attractors in recurrent neural networks, for both an analog and a integrate and fire spiking model. The synaptic strength is determined by a learning rule based on spike-time-dependent plasticity, with an asymmetric time window depending on the relative timing between pre and postsynaptic activity. We store multiple patterns and study the network capacity. For the analog model, we find that the network capacity scales linearly with the network size, and that both capacity and the oscillation frequency of the retrieval state depend on the asymmetry of the learning time window. In addition to fully connected networks, we study sparse networks, where each neuron is connected only to a small number z ≪ N of other neurons. Connections can be short range, between neighboring neurons placed on a regular lattice, or long range, between randomly chosen pairs of neurons. We find that a small fraction of long range connections is able to amplify the capacity of the network. This imply that a small-world-network topology is optimal, as a compromise between the cost of long range connections and the capacity increase. Also in the spiking integrate and fire model the crucial result of storing and retrieval of multiple phase-coded patterns is observed. The capacity of the fully-connected spiking network is investigated, together with the relation between oscillation frequency of retrieval state and window asymmetry.
机译:我们研究了循环编码神经网络中作为稳定动态吸引子的相位编码模式的存储和检索,既有模拟模型,又有积分模型和尖峰模型。突触强度是由学习规则决定的,该学习规则基于尖峰时间相关的可塑性,其不对称时间窗口取决于突触前后活动之间的相对时间。我们存储多种模式并研究网络容量。对于模拟模型,我们发现网络容量与网络规模成线性比例,并且检索状态的容量和振荡频率均取决于学习时间窗口的不对称性。除了完全连接的网络之外,我们还研究稀疏网络,其中每个神经元仅与少量其他神经元z≪ N连接。连接可以是放置在规则格子上的相邻神经元之间的短距离连接,也可以是随机选择的神经元对之间的长距离连接。我们发现,一小部分的远程连接能够放大网络的容量。这意味着,如果要在远程连接的成本和容量增加之间做出折衷,则小世界网络拓扑是最佳的。同样在加标积分和发射模型中,观察到了存储和检索多个相位编码模式的关键结果。研究了全连接尖峰网络的容量,以及检索状态的振荡频率与窗口不对称性之间的关系。

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